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ThUnderVolt: Enabling Aggressive Voltage Underscaling and Timing Error Resilience for Energy Efficient Deep Learning Accelerators

机译:Thundervolt:为节能深度学习加速器启用积极的电压下划线和定时误差弹性

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Hardware accelerators are being increasingly deployed to boost the performance and energy efficiency of deep neural network (DNN) inference. In this paper we propose Thundervolt, a new framework that enables aggressive voltage underscaling of high-performance DNN accelerators without compromising classification accuracy even in the presence of high timing error rates. Using post-synthesis timing simulations of a DNN accelerator modeled on the Google TPU, we show that Thundervolt enables between 34%-57% energy savings on state-of-the-art speech and image recognition benchmarks with less than 1% loss in classification accuracy and no performance loss. Further, we show that Thundervolt is synergistic with and can further increase the energy efficiency of commonly used run-time DNN pruning techniques like Zero-Skip.
机译:越来越多地部署硬件加速器以提高深神经网络(DNN)推断的性能和能效。在本文中,我们提出了一个新的框架,即使在存在高时错误率的情况下,也能够在不影响分类准确度的情况下实现高性能DNN加速器的积极电压下划线的新框架。使用在Google TPU上建模的DNN加速器的后综合时序模拟,我们表明霹雳在最先进的语音和图像识别基准上节省的34 % - 57 %的能量节省了小于1 %的图像识别基准分类准确性损失,没有性能损失。此外,我们表明ThunderVolt与零跳过等常用运行时DNN修剪技术的能量效率进一步提高。

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